TagMe!: Enhancing Social Tagging with Spatial Context
نویسندگان
چکیده
TagMe! is a tagging and exploration front-end for Flickr images, which enables users to annotate specific areas of an image, i.e. users can attach tag assignments to a specific area within an image and further categorize the tag assignments. Additionally, TagMe! automatically maps tags and categories to DBpedia URIs to clearly define the meaning. In this work we discuss the differences between tags and categories and show how both facets can be applied to learn semantic relations between concepts referenced by tags and categories. We also expose the benefits of the visual (spatial) context of the tag assignments, with respect to ranking algorithms for search and retrieval of relevant items. We do so by analyzing metrics of size and position of the annotated areas. Finally, in our experiments we compare different strategies to realize semantic mappings and show that already lightweight approaches map tags and categories with high precisions (86.85% and 93.77% respectively). The TagMe! system is currently available at http://tagme.groupme.org.
منابع مشابه
The Impact of Multifaceted Tagging on Learning Tag Relations and Search
In this paper we present a model for multifaceted tagging, i.e. tagging enriched with contextual information. We present TagMe!, a social tagging front-end for Flickr images, that provides multifaceted tagging functionality: It enables users to attach tag assignments to a specific area within an image and to categorize tag assignments. Moreover, TagMe! maps tags and categories to DBpedia URIs t...
متن کاملLeveraging search and content exploration by exploiting context in folksonomy systems
With the advent of Web 2.0 tagging became a popular feature in social media systems. People tag diverse kinds of content, e.g. products at Amazon, music at Last.fm, images at Flickr, etc. In the last years several researchers analyzed the impact of tags on information retrieval. Most works focussed on tags only and ignored context information. In this article we present context-aware approaches...
متن کاملAn evaluation of enhancing social tagging with a knowledge organization system
Traditional subject indexing and classification are considered infeasible in many digital collections. Automated means and social tagging are often suggested as the two possible solutions. Both, however, have disadvantages and, depending on the purpose of use or context, require additional manual input. This study investigates ways of enhancing social tagging via knowledge organization systems,...
متن کاملEnhancing Social Tagging with a Knowledge Organization System
The paper investigates the effect on indexing and retrieval when using only social tagging versus when using social tagging in combination with suggestions from a knowledge organization system. The specific context is that of tagging by Web document readers, using Dewey Decimal Classification, its captions, Relative Index Terms and Library of Congress Subject Headings mapped to the captions. Th...
متن کاملOn the Reproducibility of the TAGME Entity Linking System
Reproducibility is a fundamental requirement of scientific research. In this paper, we examine the repeatability, reproducibility, and generalizability of TAGME, one of the most popular entity linking systems. By comparing results obtained from its public API with (re)implementations from scratch, we obtain the following findings. The results reported in the TAGME paper cannot be repeated due t...
متن کامل